Shi Jinbao, Xu Aliang, Huang Liuying, Liu Shaojie, Wu Binxuan, Zhang Zuhong
Department of Nephrology, Ningde Hospital of Traditional Chinese Medicine, Ningde, Fujian, People's Republic of China.
Pharmgenomics Pers Med. 2024 Nov 19;17:497-510. doi: 10.2147/PGPM.S488143. eCollection 2024.
Chronic kidney disease (CKD) involves complex immune dysregulation and altered gene expression profiles. This study investigates immune cell infiltration, differential gene expression, and pathway enrichment in CKD patients to identify key diagnostic biomarkers through machine learning methods.
We assessed immune cell infiltration and immune microenvironment scores using the xCell algorithm. Differentially expressed genes (DEGs) were identified using the limma package. Gene Set Enrichment Analysis (GSEA) and Gene Set Variation Analysis (GSVA) were performed to evaluate pathway enrichment. Machine learning techniques (LASSO and Random Forest) pinpointed diagnostic genes. A nomogram model was constructed and validated for diagnostic prediction. Spearman correlation explored associations between key genes and immune cell recruitment.
The CKD group exhibited significantly altered immune cell infiltration and increased immune microenvironment scores compared to the normal group. We identified 2335 DEGs, including 124 differentially expressed immune-related genes. GSEA highlighted significant enrichment of inflammatory and immune pathways in the high immune score (HIS) subgroup, while GSVA indicated upregulation of immune responses and metabolic processes in HIS. Machine learning identified four key diagnostic genes: RGS1, IL4I1, NR4A3, and SOCS3. Validation in an independent dataset (GSE96804) and clinical samples confirmed their diagnostic potential. The nomogram model integrating these genes demonstrated high predictive accuracy. Spearman correlation revealed positive associations between the key genes and various immune cells, indicating their roles in immune modulation and CKD pathogenesis.
This study provides a comprehensive analysis of immune alterations and gene expression profiles in CKD. The identified diagnostic genes and the constructed nomogram model offer potent tools for CKD diagnosis. The immunomodulatory roles of RGS1, IL4I1, NR4A3, and SOCS3 warrant further investigation as potential therapeutic targets in CKD.
慢性肾脏病(CKD)涉及复杂的免疫失调和基因表达谱改变。本研究调查CKD患者的免疫细胞浸润、差异基因表达和通路富集情况,以通过机器学习方法识别关键诊断生物标志物。
我们使用xCell算法评估免疫细胞浸润和免疫微环境评分。使用limma软件包鉴定差异表达基因(DEG)。进行基因集富集分析(GSEA)和基因集变异分析(GSVA)以评估通路富集情况。机器学习技术(LASSO和随机森林)确定诊断基因。构建并验证列线图模型用于诊断预测。Spearman相关性分析探讨关键基因与免疫细胞募集之间的关联。
与正常组相比,CKD组免疫细胞浸润明显改变,免疫微环境评分增加。我们鉴定出2335个DEG,包括124个差异表达的免疫相关基因。GSEA显示在高免疫评分(HIS)亚组中炎症和免疫通路显著富集,而GSVA表明HIS中免疫反应和代谢过程上调。机器学习确定了四个关键诊断基因:RGS1、IL4I1、NR4A3和SOCS3。在独立数据集(GSE96804)和临床样本中的验证证实了它们的诊断潜力。整合这些基因的列线图模型显示出高预测准确性。Spearman相关性分析揭示关键基因与各种免疫细胞之间存在正相关,表明它们在免疫调节和CKD发病机制中的作用。
本研究对CKD中的免疫改变和基因表达谱进行了全面分析。鉴定出的诊断基因和构建的列线图模型为CKD诊断提供了有力工具。RGS1、IL4I1、NR4A3和SOCS3的免疫调节作用作为CKD潜在治疗靶点值得进一步研究。